numpy has three different functions which seem like they can be used for the same things — except that numpy.maximum can only be used element-wise, while numpy.max and numpy.amax can be used on particular axes, or all elements. Why is there more than just numpy.max? Is there some subtlety to this in performance?
(Similarly for min vs. amin vs. minimum)
Answers:
Thank you for visiting the Q&A section on Magenaut. Please note that all the answers may not help you solve the issue immediately. So please treat them as advisements. If you found the post helpful (or not), leave a comment & I’ll get back to you as soon as possible.
Method 1
np.max is just an alias for np.amax. This function only works on a single input array and finds the value of maximum element in that entire array (returning a scalar). Alternatively, it takes an axis argument and will find the maximum value along an axis of the input array (returning a new array).
>>> a = np.array([[0, 1, 6],
[2, 4, 1]])
>>> np.max(a)
6
>>> np.max(a, axis=0) # max of each column
array([2, 4, 6])
The default behaviour of np.maximum is to take two arrays and compute their element-wise maximum. Here, ‘compatible’ means that one array can be broadcast to the other. For example:
>>> b = np.array([3, 6, 1]) >>> c = np.array([4, 2, 9]) >>> np.maximum(b, c) array([4, 6, 9])
But np.maximum is also a universal function which means that it has other features and methods which come in useful when working with multidimensional arrays. For example you can compute the cumulative maximum over an array (or a particular axis of the array):
>>> d = np.array([2, 0, 3, -4, -2, 7, 9]) >>> np.maximum.accumulate(d) array([2, 2, 3, 3, 3, 7, 9])
This is not possible with np.max.
You can make np.maximum imitate np.max to a certain extent when using np.maximum.reduce:
>>> np.maximum.reduce(d) 9 >>> np.max(d) 9
Basic testing suggests the two approaches are comparable in performance; and they should be, as np.max() actually calls np.maximum.reduce to do the computation.
Method 2
You’ve already stated why np.maximum is different – it returns an array that is the element-wise maximum between two arrays.
As for np.amax and np.max: they both call the same function – np.max is just an alias for np.amax, and they compute the maximum of all elements in an array, or along an axis of an array.
In [1]: import numpy as np In [2]: np.amax Out[2]: <function numpy.core.fromnumeric.amax> In [3]: np.max Out[3]: <function numpy.core.fromnumeric.amax>
Method 3
For completeness, in Numpy there are four maximum related functions. They fall into two different categories:
np.amax/np.max,np.nanmax: for single array order statistics- and
np.maximum,np.fmax: for element-wise comparison of two arrays
I. For single array order statistics
NaNs propagator np.amax/np.max and its NaN ignorant counterpart np.nanmax.
-
np.maxis just an alias ofnp.amax, so they are considered as one function.>>> np.max.__name__ 'amax' >>> np.max is np.amax True
-
np.maxpropagates NaNs whilenp.nanmaxignores NaNs.>>> np.max([np.nan, 3.14, -1]) nan >>> np.nanmax([np.nan, 3.14, -1]) 3.14
II. For element-wise comparison of two arrays
NaNs propagator np.maximum and its NaNs ignorant counterpart np.fmax.
-
Both functions require two arrays as the first two positional args to compare with.
# x1 and x2 must be the same shape or can be broadcast np.maximum(x1, x2, /, ...); np.fmax(x1, x2, /, ...)
-
np.maximumpropagates NaNs whilenp.fmaxignores NaNs.>>> np.maximum([np.nan, 3.14, 0], [np.NINF, np.nan, 2.72]) array([ nan, nan, 2.72]) >>> np.fmax([np.nan, 3.14, 0], [np.NINF, np.nan, 2.72]) array([-inf, 3.14, 2.72])
-
The element-wise functions are
np.ufunc(Universal Function), which means they have some special properties that normal Numpy function don’t have.>>> type(np.maximum) <class 'numpy.ufunc'> >>> type(np.fmax) <class 'numpy.ufunc'> >>> #---------------# >>> type(np.max) <class 'function'> >>> type(np.nanmax) <class 'function'>
And finally, the same rules apply to the four minimum related functions:
np.amin/np.min,np.nanmin;- and
np.minimum,np.fmin.
Method 4
np.maximum not only compares elementwise but also compares array elementwise with single value
>>>np.maximum([23, 14, 16, 20, 25], 18) array([23, 18, 18, 20, 25])
All methods was sourced from stackoverflow.com or stackexchange.com, is licensed under cc by-sa 2.5, cc by-sa 3.0 and cc by-sa 4.0